Automating battlefield event reporting using conceptual spaces and fuzzy logic for passive speech interpretation

K. McConky, P. McLaughlin, W. Rose, M. Sudit
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Abstract

This research explores the feasibility of performing passive information capture on voice data in order to analyze and classify the contents of interpersonal communication. The general form of this problem is very difficult as fully automated speech understanding technology does not exist. This is further complicated by battlefield realities including: noise, jargon and unstructured speech. However, when specific topics are isolated for extraction, the challenge becomes manageable. Conceptual Spaces is used as a fusion framework to classify data passively captured by traditional speech recognition software coupled with fuzzy logic to provide matching of phonetics to jargon. Together these technologies prove to be a valuable fusion framework because of their ability to mitigate the high levels of errors inherent in speech recognition. An initial study focused on recognizing important topics in communications between commanders and field personnel amidst background chatter. Results indicate the Conceptual Spaces model is flexible enough to define ¿spaces¿ for military events, and the underlying optimization model used for classification was robust and fast enough to quickly and accurately classify the noisy scenario data. This technology enables a new and more general class of automation, permitting conversion of passive speech into structured data. The authors gratefully acknowledge the support provided by the Defense Advanced Research Projects Agency (DARPA).
使用概念空间和模糊逻辑进行被动语音解释的战场事件报告自动化
本研究探讨了对语音数据进行被动信息捕获的可行性,以分析和分类人际沟通的内容。这个问题的一般形式是非常困难的,因为完全自动化的语音理解技术不存在。战场上的现实使情况变得更加复杂,包括:噪音、行话和无结构的演讲。然而,当特定主题被分离出来进行提取时,这个挑战就变得易于管理了。采用概念空间作为融合框架,对传统语音识别软件被动捕获的数据进行分类,并结合模糊逻辑进行语音与行话的匹配。这些技术被证明是一个有价值的融合框架,因为它们能够减轻语音识别中固有的高水平错误。最初的研究侧重于识别指挥官和战地人员之间在背景闲聊中通信的重要主题。结果表明,概念空间模型具有足够的灵活性来定义军事事件的“空间”,用于分类的底层优化模型具有足够的鲁棒性和快速性,可以快速准确地对有噪声的场景数据进行分类。这项技术实现了一种新的、更通用的自动化类型,允许将被动语音转换为结构化数据。作者感谢美国国防高级研究计划局(DARPA)提供的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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